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A gradient-directed Monte Carlo method for global optimization in a discrete space: Application to protein sequence design and folding

机译:离散空间全局优化的梯度定向蒙特卡罗方法:在蛋白质序列设计和折叠中的应用

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摘要

We apply the gradient-directed Monte Carlo (GDMC) method to select optimal members of a discrete space, the space of chemically viable proteins described by a model Hamiltonian. In contrast to conventional Monte Carlo approaches, our GDMC method uses local property gradients with respect to chemical variables that have discrete values in the actual systems, e.g., residue types in a protein sequence. The local property gradients are obtained from the interpolation of discrete property values, following the linear combination of atomic potentials scheme developed recently [M. Wang et al., J. Am. Chem. Soc. 128, 3228 (2006)]. The local property derivative information directs the search toward the global minima while the Metropolis criterion incorporated in the method overcomes barriers between local minima. Using the simple HP lattice model, we apply the GDMC method to protein sequence design and folding. The GDMC algorithm proves to be particularly efficient, suggesting that this strategy can be extended to other discrete optimization problems in addition to inverse molecular design.
机译:我们应用梯度定向蒙特卡洛(GDMC)方法来选择离散空间的最佳成员,该空间是由模型哈密顿量描述的化学上可行的蛋白质的空间。与传统的蒙特卡洛方法相反,我们的GDMC方法针对在实际系统中具有离散值(例如蛋白质序列中的残基类型)的化学变量使用局部性质梯度。遵循最近开发的原子电势方案的线性组合,从离散属性值的内插中获得局部属性梯度[M. Wang et al。,J.Am.Chem.Soc。,66,1959。化学Soc。 128,3228(2006)]。局部属性导数信息将搜索引向全局最小值,而方法中包含的Metropolis准则则克服了局部最小值之间的障碍。使用简单的HP格模型,我们将GDMC方法应用于蛋白质序列设计和折叠。 GDMC算法被证明是特别有效的,这表明该策略可以扩展到除逆分子设计之外的其他离散优化问题。

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